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| import logging |
| import os |
| from collections import defaultdict, Counter |
| from concurrent.futures import ThreadPoolExecutor |
| from copy import deepcopy |
| from typing import Callable |
|
|
| from graphrag.general.graph_prompt import SUMMARIZE_DESCRIPTIONS_PROMPT |
| from graphrag.utils import get_llm_cache, set_llm_cache, handle_single_entity_extraction, \ |
| handle_single_relationship_extraction, split_string_by_multi_markers, flat_uniq_list |
| from rag.llm.chat_model import Base as CompletionLLM |
| from rag.utils import truncate |
|
|
| GRAPH_FIELD_SEP = "<SEP>" |
| DEFAULT_ENTITY_TYPES = ["organization", "person", "geo", "event", "category"] |
| ENTITY_EXTRACTION_MAX_GLEANINGS = 2 |
|
|
|
|
| class Extractor: |
| _llm: CompletionLLM |
|
|
| def __init__( |
| self, |
| llm_invoker: CompletionLLM, |
| language: str | None = "English", |
| entity_types: list[str] | None = None, |
| get_entity: Callable | None = None, |
| set_entity: Callable | None = None, |
| get_relation: Callable | None = None, |
| set_relation: Callable | None = None, |
| ): |
| self._llm = llm_invoker |
| self._language = language |
| self._entity_types = entity_types or DEFAULT_ENTITY_TYPES |
| self._get_entity_ = get_entity |
| self._set_entity_ = set_entity |
| self._get_relation_ = get_relation |
| self._set_relation_ = set_relation |
|
|
| def _chat(self, system, history, gen_conf): |
| hist = deepcopy(history) |
| conf = deepcopy(gen_conf) |
| response = get_llm_cache(self._llm.llm_name, system, hist, conf) |
| if response: |
| return response |
| response = self._llm.chat(system, hist, conf) |
| if response.find("**ERROR**") >= 0: |
| raise Exception(response) |
| set_llm_cache(self._llm.llm_name, system, response, history, gen_conf) |
| return response |
|
|
| def _entities_and_relations(self, chunk_key: str, records: list, tuple_delimiter: str): |
| maybe_nodes = defaultdict(list) |
| maybe_edges = defaultdict(list) |
| ent_types = [t.lower() for t in self._entity_types] |
| for record in records: |
| record_attributes = split_string_by_multi_markers( |
| record, [tuple_delimiter] |
| ) |
|
|
| if_entities = handle_single_entity_extraction( |
| record_attributes, chunk_key |
| ) |
| if if_entities is not None and if_entities.get("entity_type", "unknown").lower() in ent_types: |
| maybe_nodes[if_entities["entity_name"]].append(if_entities) |
| continue |
|
|
| if_relation = handle_single_relationship_extraction( |
| record_attributes, chunk_key |
| ) |
| if if_relation is not None: |
| maybe_edges[(if_relation["src_id"], if_relation["tgt_id"])].append( |
| if_relation |
| ) |
| return dict(maybe_nodes), dict(maybe_edges) |
|
|
| def __call__( |
| self, chunks: list[tuple[str, str]], |
| callback: Callable | None = None |
| ): |
|
|
| results = [] |
| max_workers = int(os.environ.get('GRAPH_EXTRACTOR_MAX_WORKERS', 50)) |
| with ThreadPoolExecutor(max_workers=max_workers) as exe: |
| threads = [] |
| for i, (cid, ck) in enumerate(chunks): |
| ck = truncate(ck, int(self._llm.max_length*0.8)) |
| threads.append( |
| exe.submit(self._process_single_content, (cid, ck))) |
|
|
| for i, _ in enumerate(threads): |
| n, r, tc = _.result() |
| if not isinstance(n, Exception): |
| results.append((n, r)) |
| if callback: |
| callback(0.5 + 0.1 * i / len(threads), f"Entities extraction progress ... {i + 1}/{len(threads)} ({tc} tokens)") |
| elif callback: |
| callback(msg="Knowledge graph extraction error:{}".format(str(n))) |
|
|
| maybe_nodes = defaultdict(list) |
| maybe_edges = defaultdict(list) |
| for m_nodes, m_edges in results: |
| for k, v in m_nodes.items(): |
| maybe_nodes[k].extend(v) |
| for k, v in m_edges.items(): |
| maybe_edges[tuple(sorted(k))].extend(v) |
| logging.info("Inserting entities into storage...") |
| all_entities_data = [] |
| for en_nm, ents in maybe_nodes.items(): |
| all_entities_data.append(self._merge_nodes(en_nm, ents)) |
|
|
| logging.info("Inserting relationships into storage...") |
| all_relationships_data = [] |
| for (src,tgt), rels in maybe_edges.items(): |
| all_relationships_data.append(self._merge_edges(src, tgt, rels)) |
|
|
| if not len(all_entities_data) and not len(all_relationships_data): |
| logging.warning( |
| "Didn't extract any entities and relationships, maybe your LLM is not working" |
| ) |
|
|
| if not len(all_entities_data): |
| logging.warning("Didn't extract any entities") |
| if not len(all_relationships_data): |
| logging.warning("Didn't extract any relationships") |
|
|
| return all_entities_data, all_relationships_data |
|
|
| def _merge_nodes(self, entity_name: str, entities: list[dict]): |
| if not entities: |
| return |
| already_entity_types = [] |
| already_source_ids = [] |
| already_description = [] |
|
|
| already_node = self._get_entity_(entity_name) |
| if already_node: |
| already_entity_types.append(already_node["entity_type"]) |
| already_source_ids.extend(already_node["source_id"]) |
| already_description.append(already_node["description"]) |
|
|
| entity_type = sorted( |
| Counter( |
| [dp["entity_type"] for dp in entities] + already_entity_types |
| ).items(), |
| key=lambda x: x[1], |
| reverse=True, |
| )[0][0] |
| description = GRAPH_FIELD_SEP.join( |
| sorted(set([dp["description"] for dp in entities] + already_description)) |
| ) |
| already_source_ids = flat_uniq_list(entities, "source_id") |
| description = self._handle_entity_relation_summary( |
| entity_name, description |
| ) |
| node_data = dict( |
| entity_type=entity_type, |
| description=description, |
| source_id=already_source_ids, |
| ) |
| node_data["entity_name"] = entity_name |
| self._set_entity_(entity_name, node_data) |
| return node_data |
|
|
| def _merge_edges( |
| self, |
| src_id: str, |
| tgt_id: str, |
| edges_data: list[dict] |
| ): |
| if not edges_data: |
| return |
| already_weights = [] |
| already_source_ids = [] |
| already_description = [] |
| already_keywords = [] |
|
|
| relation = self._get_relation_(src_id, tgt_id) |
| if relation: |
| already_weights = [relation["weight"]] |
| already_source_ids = relation["source_id"] |
| already_description = [relation["description"]] |
| already_keywords = relation["keywords"] |
|
|
| weight = sum([dp["weight"] for dp in edges_data] + already_weights) |
| description = GRAPH_FIELD_SEP.join( |
| sorted(set([dp["description"] for dp in edges_data] + already_description)) |
| ) |
| keywords = flat_uniq_list(edges_data, "keywords") + already_keywords |
| source_id = flat_uniq_list(edges_data, "source_id") + already_source_ids |
|
|
| for need_insert_id in [src_id, tgt_id]: |
| if self._get_entity_(need_insert_id): |
| continue |
| self._set_entity_(need_insert_id, { |
| "source_id": source_id, |
| "description": description, |
| "entity_type": 'UNKNOWN' |
| }) |
| description = self._handle_entity_relation_summary( |
| f"({src_id}, {tgt_id})", description |
| ) |
| edge_data = dict( |
| src_id=src_id, |
| tgt_id=tgt_id, |
| description=description, |
| keywords=keywords, |
| weight=weight, |
| source_id=source_id |
| ) |
| self._set_relation_(src_id, tgt_id, edge_data) |
|
|
| return edge_data |
|
|
| def _handle_entity_relation_summary( |
| self, |
| entity_or_relation_name: str, |
| description: str |
| ) -> str: |
| summary_max_tokens = 512 |
| use_description = truncate(description, summary_max_tokens) |
| prompt_template = SUMMARIZE_DESCRIPTIONS_PROMPT |
| context_base = dict( |
| entity_name=entity_or_relation_name, |
| description_list=use_description.split(GRAPH_FIELD_SEP), |
| language=self._language, |
| ) |
| use_prompt = prompt_template.format(**context_base) |
| logging.info(f"Trigger summary: {entity_or_relation_name}") |
| summary = self._chat(use_prompt, [{"role": "user", "content": "Output: "}], {"temperature": 0.8}) |
| return summary |
|
|